Aesthetic Surgery Journal Open Forum (Dec 2021)

BreastGAN: Artificial Intelligence-Enabled Breast Augmentation Simulation

  • Christian Chartier,
  • Ayden Watt,
  • Owen Lin,
  • Akash Chandawarkar,
  • James Lee,
  • Elizabeth Hall-Findlay

DOI
https://doi.org/10.1093/asjof/ojab052
Journal volume & issue
Vol. 4

Abstract

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Abstract BackgroundManaging patient expectations is important to ensuring patient satisfaction in aesthetic medicine. To this end, computer technology developed to photograph, digitize, and manipulate three-dimensional (3D) objects has been applied to the female breast. However, the systems remain complex, physically cumbersome, and extremely expensive. ObjectivesThe authors of the current study wish to introduce the plastic surgery community to BreastGAN, a portable, artificial intelligence (AI)-equipped tool trained on real clinical images to simulate breast augmentation outcomes. MethodsCharts of all patients who underwent bilateral breast augmentation performed by the senior author were retrieved and analyzed. Frontal before and after images were collected from each patient’s chart, cropped in a standardized fashion, and used to train a neural network designed to manipulate before images to simulate a surgical result. AI-generated frontal after images were then compared with the real surgical results. ResultsStandardizing the evaluation of surgical results is a timeless challenge which persists in the context of AI-synthesized after images. In this study, AI-generated images were comparable to real surgical results. ConclusionsThis study features a portable, cost-effective neural network trained on real clinical images and designed to simulate surgical results following bilateral breast augmentation. Tools trained on a larger dataset of standardized surgical image pairs will be the subject of future studies.